Book Image

Artificial Intelligence with Python Cookbook

By : Ben Auffarth
Book Image

Artificial Intelligence with Python Cookbook

By: Ben Auffarth

Overview of this book

Artificial intelligence (AI) plays an integral role in automating problem-solving. This involves predicting and classifying data and training agents to execute tasks successfully. This book will teach you how to solve complex problems with the help of independent and insightful recipes ranging from the essentials to advanced methods that have just come out of research. Artificial Intelligence with Python Cookbook starts by showing you how to set up your Python environment and taking you through the fundamentals of data exploration. Moving ahead, you’ll be able to implement heuristic search techniques and genetic algorithms. In addition to this, you'll apply probabilistic models, constraint optimization, and reinforcement learning. As you advance through the book, you'll build deep learning models for text, images, video, and audio, and then delve into algorithmic bias, style transfer, music generation, and AI use cases in the healthcare and insurance industries. Throughout the book, you’ll learn about a variety of tools for problem-solving and gain the knowledge needed to effectively approach complex problems. By the end of this book on AI, you will have the skills you need to write AI and machine learning algorithms, test them, and deploy them for production.
Table of Contents (13 chapters)

Encoding images and style

Autoencoders are useful for representing the input efficiently. In their 2016 paper, Makhazani and others showed that adversarial autoencoders can create clearer representations than variational autoencoders, and – similar to the DCGAN that we saw in the previous recipe – we get the added benefit of learning to create new examples, which can help in semi-supervised or supervised learning scenarios, and allow training with less labeled data. Representing in a compressed fashion can also help in content-based retrieval.

In this recipe, we'll implement an adversarial autoencoder in PyTorch. We'll implement both supervised and unsupervised approaches and show the results. There's a nice clustering by classes in the unsupervised approach, and in the supervised approach, our encoder-decoder architecture can identify styles, which gives us the ability to do style transfer. In this recipe, we'll use the hello world dataset of computer...